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Semantic-based QoS management in cloud systems: Current status and future challenges

机译:云系统中基于语义的QoS管理:现状和未来挑战

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Cloud Computing and Service Oriented Architectures have seen a dramatic increase of the amount of applications, services, management platforms, data, etc. gaining momentum for the necessity of new complex methods and techniques to deal with the vast heterogeneity of data sources or services. In this sense Quality of Service (QoS) seeks for providing an intelligent environment of self-management components based on domain knowledge in which cloud components can be optimized easing the transition to an advanced governance environment. On the other hand, semantics and ontologies have emerged to afford a common and standard data model that eases the interoperability, integration and monitoring of knowledge-based systems. Taking into account the necessity of an interoperable and intelligent system to manage QoS in cloud-based systems and the emerging application of semantics in different domains, this paper reviews the main approaches for semantic-based QoS management as well as the principal methods, techniques and standards for processing and exploiting diverse data providing advanced real-time monitoring services. A semantic-based framework for QoS management is also outlined taking advantage of semantic technologies and distributed datastream processing techniques. Finally a discussion of existing efforts and challenges is also provided to suggest future directions.
机译:面向云计算和面向服务的体系结构的应用程序,服务,管理平台,数据等的数量急剧增加。由于需要新的复杂方法和技术来应对数据源或服务的巨大异质性,势头得到了增长。从这个意义上说,服务质量(QoS)寻求基于域知识提供自我管理组件的智能环境,其中可以优化云组件,从而简化了向高级治理环境的过渡。另一方面,语义学和本体论已经出现,以提供一种通用且标准的数据模型,该模型简化了基于知识的系统的互操作性,集成和监视。考虑到需要一个可互操作的智能系统来管理基于云的系统中QoS的必要性以及语义在不同领域中的新兴应用,本文回顾了基于语义的QoS管理的主要方法以及主要方法,技术和方法。提供先进的实时监控服务的用于处理和利用各种数据的标准。还概述了基于语义的QoS管理框架,该框架利用了语义技术和分布式数据流处理技术。最后,还讨论了现有的工作和挑战,以提出未来的方向。

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